Affiliation:
1. Beijing University of Technology
2. Beijing Laboratory of Advanced Information Networks
3. Thayer School of Engineering, Dartmouth College
4. School of Computer Science, University of Birmingham
Abstract
Non-invasive near-infrared spectral tomography (NIRST) can incorporate
the structural information provided by simultaneous magnetic resonance
imaging (MRI), and this has significantly improved the images obtained
of tissue function. However, the process of MRI guidance in NIRST has
been time consuming because of the needs for tissue-type segmentation
and forward diffuse modeling of light propagation. To overcome these
problems, a reconstruction algorithm for MRI-guided NIRST based on
deep learning is proposed and validated by simulation and real patient
imaging data for breast cancer characterization. In this approach,
diffused optical signals and MRI images were both used as the input to
the neural network, and simultaneously recovered the concentrations of
oxy-hemoglobin, deoxy-hemoglobin, and water via end-to-end training by
using 20,000 sets of computer-generated simulation phantoms. The
simulation phantom studies showed that the quality of the
reconstructed images was improved, compared to that obtained by other
existing reconstruction methods. Reconstructed patient images show
that the well-trained neural network with only simulation data sets
can be directly used for differentiating malignant from benign breast
tumors.
Funder
National Natural Science Foundation of
China
National Institute of Biomedical Imaging
and Bioengineering
Subject
Atomic and Molecular Physics, and Optics,Electronic, Optical and Magnetic Materials
Cited by
22 articles.
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